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The S-system computation of non-central gamma distribution

机译:非中心伽玛分布的S系统计算

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The non-central gamma distribution can be regarded as a general form of non-central χ~2 distributions whose computations were thoroughly investigated (Ruben, H., 1974, Non-central chi-square and gamma revisited. Communications in Statistics, 3(7), 607-633; Knuesel, L., 1986, Computation of the chi-square and Poisson distribution. SIAM Journal on Scientific and Statistical Computing, 7, 1022-1036; Voit, E.O. and Rust, P.F., 1987, Noncentral chi-square distributions computed by S-system differential equations. Proceedings of the Statistical Computing Section, ASA, pp. 118-121; Rust, P.F. and Voit, E.O., 1990, Statistical densities, cumulatives, quantiles, and power obtained by S-systems differential equations. Journal of the American Statistical Association, 85, 572-578; Chattamvelli, R., 1994, Another derivation of two algorithms for the noncentral χ~2 and F distributions. Journal of Statistical Computation and Simulation, 49, 207-214; Johnson, N.J., Kotz, S. and Balakrishnan, N., 1995, Continuous Univariate Distributions, Vol. 2 (2nd edn) (New York: Wiley). Both distributional function forms are usually in terms of weighted infinite series of the central one. The ad hoc approximations to cumulative probabilities of non-central gamma were extended or discussed by Chattamvelli, Kniisel and Bablok (Knuesel, L. and Bablok, B., 1996, Computation of the noncentral gamma distribution. SIAM Journal on Scientific Computing, 17, 1224-1231), and Ruben (Ruben, H., 1974, Non-central chi-square and gamma revisited. Communications in Statistics, 3(7), 607-633). However, they did not implement and demonstrate proposed numerical procedures. Approximations to non-central densities and quantiles are not available. In addition, its S-system formulation has not been derived. Here, approximations to cumulative probabilities, density, and quantiles based on the method of Kniisel and Bablok are derived and implemented in R codes. Furthermore, two alternate S-system forms are recast on the basis of techniques of Savageau and Voit (Savageau, M.A. and Voit, E.O., 1987, Recasting nonlinear differential equations as S-systems: A canonical nonlinear form. Mathematical Biosciences, 87, 83-115) as well as Chen (Chen, Z.-Y., 2003, Computing the distribution of the squared sample multiple correlation coefficient with S-Systems. Communications in Statistics-Simulation and Computation, 32(3), 873-898.) and Chen and Chou (Chen, Z.-Y. and Chou, Y.-C., 2000, Computing the noncentral beta distribution with S-system. Computational Statistics and Data Analysis, 33, 343-360.). Statistical densities, cumulative probabilities, quantiles can be evaluated by only one numerical solver power low analysis and simulation (PLAS). With the newly derived S-systems of non-central gamma, the specialized non-central χ~2 distributions are demonstrated under five cases in the same three situations studied by Rust and Voit. Both numerical values in pairs are almost equal. Based on these, nine cases in three similar situations are designed for demonstration and evaluation. In addition, exact values in finite significant digits are provided for comparison. Demonstrations are conducted by R package and PLAS solver in the same PC system. By doing these, very accurate and consistent numerical results are obtained by three methods in two groups. On the other hand, these three methods are performed competitively with respect to speed of computation. Numerical advantages of S-systems over the ad hoc approximation and related properties are also discussed.
机译:非中心伽玛分布可以看作是非中心χ〜2分布的一种通用形式,其计算已得到了深入研究(Ruben,H.,1974,重新研究了非中心卡方和伽玛。《统计通讯》,3( 7),607-633; Knuesel,L.,1986,卡方和Poisson分布的计算; SIAM科学与统计计算杂志,7,1022-1036; Voit,EO和Rust,PF,1987,非中心chi S系统微分方程计算的平方分布,《统计计算》,ASA,第118-121页; Rust,PF和Voit,EO,1990,统计密度,累积量,分位数和S系统获得的幂微分方程。美国统计协会杂志,85,572-578; Chattamvelli,R.,1994,两种非中心χ〜2和F分布算法的另一推导。统计计算与仿真学报,49,207-214 ;约翰逊,新泽西州,科茨,S。和巴拉克拉希南,N.,1995年,连续单变量分布,卷。 2(第二版)(纽约:威利)。两种分布函数形式通常都以中央无穷级的加权无穷级数表示。 Chattamvelli,Kniisel和Bablok(Knuesel,L.和Bablok,B.,1996,非中心伽马分布的计算)扩展或讨论了非中心伽马累积概率的即席近似.SIAM Journal on Scientific Computing,17 1224-1231)和鲁宾(Ruben,H.,1974,重新研究非中心卡方和伽玛。《统计通讯》 3(7),607-633)。但是,他们没有实施和证明拟议的数值程序。无法获得非中心密度和分位数的近似值。此外,尚未得出其S系统公式。在此,基于Kniisel和Bablok的方法,得出了累积概率,密度和分位数的近似值,并以R代码实现。此外,在Savageau和Voit的技术的基础上,重铸了两种替代的S系统形式(Savageau,MA和Voit,EO,1987年,将非线性微分方程重铸为S系统:一种典型的非线性形式。Mathematical Biosciences,87,83 -115)以及Chen(Chen,Z.-Y.,2003年,使用S-Systems计算样本多重相关系数平方的分布),《统计模拟与计算通讯》,32(3),873-898。 )和Chen和Chou(Chen,Z.-Y。和Chou,Y.-C.,2000年,《使用S-system计算非中心beta分布。计算统计与数据分析》,第33卷,第343-360页)。统计密度,累积概率,分位数只能通过一个数值求解器低功耗分析和模拟(PLAS)进行评估。利用新导出的非中心伽玛S系统,在Rust和Voit研究的相同三种情况下的五种情况下,证明了特殊的非中心χ〜2分布。成对的两个数值几乎相等。基于这些,设计了三种相似情况下的九个案例进行演示和评估。此外,还提供有限有效位数的精确值以进行比较。演示是在同一PC系统中由R包和PLAS求解器进行的。通过这样做,可以通过两组中的三种方法获得非常准确和一致的数值结果。另一方面,这三种方法相对于计算速度而言竞争性地执行。还讨论了S系统相对于ad hoc逼近的数值优势和相关属性。

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